International Journal of Environmental Monitoring and Analysis 2016; 4(2): 39-44 http://www.sciencepublishinggroup.com/j/ijema doi: 10.11648/j.ijema.20160402.11 ISSN: 2328-7659 (Print); ISSN: 2328-7667 (Online) Study on Bioagents/Bioaerosols Standoff Detection by Lidar Yang Hui 1 , Sun Yanfei 1 , Wang Tiedong 1 , Zhao Xuesong 2 1 New Star Application Technology Institute, Hefei, China 2 Key Lab. of Environmental Optics & Technology, CAS, Hefei, China Email address: [email protected] (Yang Hui), [email protected] (Sun Yanfei), [email protected] (Wang Tiedong), [email protected] (Zhao Xuesong) To cite this article: Yang Hui, Sun Yanfei, Wang Tiedong, Zhao Xuesong. Study on Bioagents/Bioaerosols Standoff Detection by Lidar. International Journal of Environmental Monitoring and Analysis. Vol. 4, No. 2, 2016, pp. 39-44. doi: 10.11648/j.ijema.20160402.11 Received: February 21, 2016; Accepted: March 10, 2016; Published: March 29, 2016 Abstract: Scattering, fluorescence and polarization are the important data source for bioagent or bioaerosol time-space observation and identification. This paper stated and discussed the theory and data inversion principles for Mie scattering, laser induced fluorescence and polarization sensing Lidar. The sensing and data inversion results for bioagent/bioaerosol extinction coefficient, horizontal linear depolarization ratio were also demonstrated. The signal and SNR simulation of fluorescence lidar were also demonstrated. The sensing results revealed that the three kinds of detecting technology approaches are reasonable and potential for bioagent/bioaerosol characterization and recognition. Keywords: Bioagents/Bioaerosols, Lidar, Laser Induced Fluorescence, Depolarization Ratio, Mie Scattering 1. Introduction Biological warfare agents (BWAs) or bioagents are live pathogenic microorganisms and biotoxin used in biological terrorism attack or in the battlefield, which are capable to cause mass infections or poisoning of people, animals and/or plants at reasonable economical cost. Bioagents can be sorted according to the causal agent as bacteria, viruses, rickettsiae and toxins [1, 2, 3]. Bioagents are relatively inexpensive to produce and can yield a significant impact as a terrorist weapon. Up to now, there are more than 1200 kinds of bioagents that can be produced to biological weapon. The infection of bioagents is mainly caused through absorption from respiratory tract, alimentary tract, or direct contact of skin, the deterrence will be much more awful enhanced by the recombinant DNA technique, and the death rate of un- immunized people will be nearly 100%. The World Health Organization estimated that attacking a large city with 50 kg of anthrax spores would produce 95,000 deaths and an additional 125,000 sicknesses [4]. And for viral hemorrhagic fevers, less than 10 organisms can cause decease and many of the most dangerous biological warfare agents are infectious when less than 10,000 organisms or spores are inhaled [5]. On the other hand, because of the common intrinsic fluorescence characteristics of fluorophore, such as tryptophan, tyrosine, etc., it’s difficult to distinguish harmless bacteria from fatal bacteria, even genetically in some cases. Bioagents can be disseminated through at least three major ways: by vector (i.e., insects), by contaminated water or food supplies, and the most effective way of dispersion is the form of aerosol particles suspending in the air. As for the biological aerosol (bioaerosol), it includes plant and insect debris, fungal and plant spores, pollen, cells, viruses and bacteria. Abundance in the atmosphere, bioaerosol affects the cloud microphysical processes, helps to the biodiversity and disease transmission through long range transport. Typical point detection and discrimination system based sample technique can detect bioagents/bioaerosols with a low time resolution and a relatively high false alarm rate, the bioactivity can be deteriorated during the sample procedure, and the exterior factors such as dehydration, variation of temperature will also affect the recognition result. Early warning of a biological attack such as lidar standoff detection offers many potential capabilities not easily provided by point detection systems such as sensitivity over a wide area, easy to deploy, capability of mapping, allowing for early warning to downwind assets and population, etc.
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International Journal of Environmental Monitoring and Analysis 2016; 4(2): 39-44
http://www.sciencepublishinggroup.com/j/ijema
doi: 10.11648/j.ijema.20160402.11
ISSN: 2328-7659 (Print); ISSN: 2328-7667 (Online)
Study on Bioagents/Bioaerosols Standoff Detection by Lidar
Yang Hui1, Sun Yanfei
1, Wang Tiedong
1, Zhao Xuesong
2
1New Star Application Technology Institute, Hefei, China 2Key Lab. of Environmental Optics & Technology, CAS, Hefei, China
To cite this article: Yang Hui, Sun Yanfei, Wang Tiedong, Zhao Xuesong. Study on Bioagents/Bioaerosols Standoff Detection by Lidar. International Journal of
Environmental Monitoring and Analysis. Vol. 4, No. 2, 2016, pp. 39-44. doi: 10.11648/j.ijema.20160402.11
Received: February 21, 2016; Accepted: March 10, 2016; Published: March 29, 2016
Abstract: Scattering, fluorescence and polarization are the important data source for bioagent or bioaerosol time-space
observation and identification. This paper stated and discussed the theory and data inversion principles for Mie scattering, laser
induced fluorescence and polarization sensing Lidar. The sensing and data inversion results for bioagent/bioaerosol extinction
coefficient, horizontal linear depolarization ratio were also demonstrated. The signal and SNR simulation of fluorescence lidar
were also demonstrated. The sensing results revealed that the three kinds of detecting technology approaches are reasonable
and potential for bioagent/bioaerosol characterization and recognition.
355nm parallel and perpendicular power polarization and
355nm fluorescence signal. The scattering, polarization and
fluorescence signal were accumulated for at least 60 seconds,
and raman signal was accumulated for at least 30 minutes.
The main specifications of lidar are summarized in table 1.
Fig. 1. Sketch of bioagent/bioaerosol sensing lidar.
Table 1. Main specifications of fluorescence sensing lidar.
Laser Nd:YAG
Wavelength(nm) 532, 355, 387(Raman)
Laser pulse energy(mJ) >40
Repetition rate(Hz) 20
Pulse width(ns) 20
Accumulated pulse counts 2000
Telescope Schmidt-cassegrainian
Diameter(mm) Ф300
Field of view(mrad) 1-2 adjustable
Receiver
Filter central wavelength(nm) 465
Filter width(nm) 60
Total optical transmittance 0.16
PMT quantum yield 0.2
Range resolution(m) 15
Fluorescence central wavelength(nm) 465
NADH Quantum yield 0.1
NADH fluorescence cross section 5e-12
2.2. Theory of Mie Scattering and Fluorescencel Lidar
The elastic Mie lidar equation assuming single scattering
and is describing the received optical power as [7]
0 L
L L L L2
A cP( , z) P ( ) ( , z) (z) T(z)
2z
⋅ τλ = ⋅ ⋅ξ λ ⋅β λ ⋅ξ ⋅ (1)
where PL is the outgoing effect of the laser and is calculated
as L L L
P E /= τ , 0
A is the aperture area, z is the range in
meter, L
( )ξ λ is the optical efficiency of the system, L
( , z)β λ
International Journal of Environmental Monitoring and Analysis 2016; 4(2): 39-44 41
is the volume backscatter coefficient for the elastic
backscattering, (z)ξ is the overlap function between the
transmitter and the receiver field-of-view. The speed of light
is c and L
τ is the pulse length of the laser, T(z) is the total
transmission. The laser wavelength is denoted as L
λ . The
receiver noise is simulated by the detector and optical
background induced noise. The total transmission at range z
is in general calculated as
Z
L
0
T(z) exp[ 2 ( , z)dz]= − α λ∫ (2)
The extinction coefficient L
( , z)α λ can be divided into
two terms, one for the atmospheric background and one for
the bioagents/bioaerosol cloud,
L atm L c L( , z) ( , z) ( , z)α λ = α λ + α λ (3)
The backscattering coefficient extinction coefficient
L( , z)β λ can be also divided into two terms, one for the
atmospheric background and one for the bioagents/bioaerosol
cloud,
L atm L c L( , z) ( , z) ( , z)β λ = β λ + β λ (4)
The lidar ratio of atmosphere can be calculated by
atmospheric mode and for the natural aerosols is set normally
as atmR /= α β =50.
The fluorescence equation is similar to the lidar equation
and is written as
F F
0 0 LL
L 0 L2
A c( ) L ( )P( , z) P K ( ) T(z) (z) N(z)
4 2z
⋅ τσ λ ⋅ λλ = ⋅ ⋅ λ ⋅ ⋅ ξ ⋅ ⋅ ⋅
π (5)
where 0 L
K ( )λ is the optical filter function including the
optical efficiency, N(z) is the particle concentration, F
L( )σ λ
is the fluorescence cross section for the present substance and
wavelength and FL ( )λ is the fingerprint function for the
present substance.
2.3. Ppolarization Lidar Equation
According to equation (1), the vertical and perpendicular
backscattering signal of 355nm at distance z can be given as
0 0 L
L L L2
A cP (z) P ( ) ( , z) (z) T(z) p (z)
2z⊥ ⊥
⋅ τ= ⋅ ⋅ ξ λ ⋅β λ ⋅ξ ⋅ ⋅ (6)
0 0 L
|| L L L ||2
A cP (z) P ( ) ( , z) (z) T(z) p (z)
2z
⋅ τ= ⋅ ⋅ξ λ ⋅β λ ⋅ξ ⋅ ⋅ (7)
Where, p (z)⊥ and ||
p (z) are the constant of two channel
individually and they depend on the quantum yield of PMT
and optical receiving, so the depolarization ration is given as
||
|| || ||
p (z)P (z) / p (z) P (z)(z)
P (z) / p (z) P (z) p (z)
⊥ ⊥ ⊥
⊥
δ = = ⋅ (8)
Where, ||
p (z)K
p (z)⊥
= can be obtained by experimental data.
3. Data Retrieval for Mie Lidar
In the hypothesis of single scattering, The Fernald method
[8] was used to invert the following distributions of the
aerosol extinction coefficients, the former is backward
solution and the latter is forward solution.
c
c c
z
atm
z
c atm z z
catm
c c atm c z z
X(z) exp[2(S 1) (z )dz ]
(z) S (z)X(z )
2 X(z)exp[2(S 1) (z )dz ]dz(z ) S (z )
′ ′⋅ − αα = − α +
′′ ′′ ′+ − αα + α
∫
∫ ∫ (9)
c
c c
z
atm
z
c atm z z
catm
c c atm c z z
X(z) exp[ 2(S 1) (z )dz ]
(z) S (z)X(z )
2 X(z)exp[ 2(S 1) (z )dz ]dz(z ) S (z )
′ ′⋅ − − αα = − α +
′′ ′′ ′− − − αα + α
∫
∫ ∫ (10)
Where, X(z) = P(z) ·z2, S = Sc / Satm,Sc is the aerosol
extinction-to-backscattering ratio which differs with the
aerosol concentration, size distribution and chemical
component, its value is chosen 40~50 suggested by Sasano
and Browell [9], Satm is the extinction-to-backscattering ratio
of atmospheric molecular valued by 8π/3, Satm = 8π/3, Zc is
calibration height which is selected by the calculation
program automatically within the height range of 4.0~6.0km
at daytime or 6.0~8.0 km at nighttime. At the calibration
height the content of aerosol drops to its minimized value and
close to zero, so R (Zc) = c
X(z ) /atm c
(z )β comes to its
minimized value. So c c(z )α can be deduced by the aerosol
and atmospheric molecular scattering ratio
R (Zc) = ((βc (zc) + βatm(zc)/ βatm(zc))=1.01 (11)
42 Yang Hui et al.: Study on Bioagents/Bioaerosols Standoff Detection by Lidar
(a)
(b)
Fig. 2. Time and space distributions of bioaerosol, (a)355nm, (b)532nm.
Figure 2 shows the time and space distributions of aerosol
extinction coefficient measured by our multi-channel Lidar
and retrieved with the Ferald method. To the right part of
each diagram shows the distribution of aerosol extinction
coefficient of each laser shot. The measurements were made
at hefei city, china, the lidar was laid verticallly. From figure
(a) and (b), it can be easily concluded that:
At the bottom of boundary layer, the extinction coefficient
distributions remained almost the same trend for the two
wavelengths, the maximal value was up to 1.0km-1.
The extra aerosol cloud layer between heights from 1.7km
to 2.9km were retrieved through the 355nm channel, the
transmittance of 532nm channel is obviously higher, but
355nm channel is more suitable for the fine aerosol particles
monitoring with a relatively high laser energy.
4. SNR of Fluorescence Lidar
The SNR of fluorescence signal can be described as
s
s b d
N (z)SNR(z) n
N (z) 2(N N )= ×
+ + (12)
Where, Ns (z) is photo number received at height z, Nb (z)
and Nd are the photo number of background and detector dark
current respectively. The more photo number received, and
less background and detector noise, the SNR (z) will be
higher. And also, the increased laser pulses can enhance the
SNR. The simulated fluorescence signal and SNR profiles are
shown in figure 3.
International Journal of Environmental Monitoring and Analysis 2016; 4(2): 39-44 43
(a)
(b)
Fig. 3. Profiles of simulated fluorescence signal (a) and SNR (b).
The fluorescence signal profile was simulated with
standard atmospheric mode. The number of laser pulse is set
as n = 2000, the night SNR is much better than that of
daytime. The requirement of SNR for real lidar system is set
to SNR>10.
5. Results of Depolarization Detection
The time and space distributions of depolarization ratio at
355nm and extinction coefficient at 532nm are shown in
figure 4. The profiles were obtained by the aerosol fine
particle lidar on November 27, 2014 at Hefei city. The lidar
was manufactured and adjusted by AIOFM. Similarly, figure
4(a) shows the extinction coefficient profiles, and the profile
at an exact single spot time is shown on the right. From
figure 4, it can be shown that:
In the boundary layer, the height of 500m close-ground
layer decreased with the time;
In the boundary layer, the complex multi-layer structured
extinction coefficient distributions were observed, it means
that the aerosol concentration along the laser beam path was
affected seriously by the wind, humidity, press and other
atmospheric condition;
The two separated vertical distributions of depolarization
ratio layer were obvious, the bottom layer is ground layer and
the upper layer is surface layer and boundary layer. In the
ground layer of 500m height, the value of depolarization ratio
remains ness than 0.01, it means that, in this layer, the aerosol
particle is in the shape of fine spherical.
After 04:00pm, in the upper surface layer and boundary
layer, the zigzag structured distribution of depolarization
ratio was observed clearly. At some points along the path, the
maximized value of depolarization ratio reached 0.3, it means
that the height, the aerosol particle is not spherical caused by
some complex physical and photochemistry processes, such
as, coagulation, condensation, cohesion, and chemical
reaction with the pollution materials released by the
industrial and living activities, etc.
(a)
100 1 .103
1 .104
1 .105
1 .106
1 .107
0
5
10
Signal
Alt
itu
de(
km
)
0.1 1 10 100 1 .103
1 .104
1 .105
0
5
10
100mJ(daytime)
150mJ(daytime)
100mJ(nighttime)
150mJ(nighttime)
SNR
Alt
itu
de
(k
m)
44 Yang Hui et al.: Study on Bioagents/Bioaerosols Standoff Detection by Lidar
(b)
Fig. 4. Vertical and time distributions of extinction coefficient and linear depolarization ratio.
6. Discussions and Conclusions
The remote sensing and recognition of
bioagents/bioaserosol is the hot spot in the field of
photochemistry, biochemistry, etc. Scattering, fluorescence
and polarization data are the effective data source of
bioagents/bioaserosol time-space distribution monitoring and
characteristics recognition. In this paper, the principle, data
retrieve algorithms of Mie scattering, ultraviolet laser
induced fluorescence lidar are introduced, and the results of
vertical time-space evolvement, distributions of extinction
coefficient, depolarization ratio observation were discussed.
With the combined multi-dimension observation data, the
bioagents/bioaserosol recognition and discrimination appear
feasible in principle. In this paper, the polarization data of
355nm wavelength is discussed, and for the following next
generation lidar system, polarization characteristics on more
wavelengths will be measured and tested, at the same time, the
PMT array will be integrated into the system for fluorescence
measurement of bioaerosol or bioagents stimulants. So, future
work is required to make it reality, and the following questions
must be addressed: Except the time-space distribution, how to
discriminate exactly bioagents/bioaserosol with observed
fluorescence data? Except 355nm wavelength, what
wavelength is more effective for depolarization ration
measurement, the shorter one or longer one? Does the
depolarization ration is wavelength dependent? And what is
effect of atmospheric factors, such as relative humidity,
background aerosol fluctuation?
Acknowledgment
The work was supported by the National Natural Science
Foundation of China named “Study on Technology of
Ultraviolet Laser-induced Fluorescence LIDAR for Bioagent
Remote Sensing” No. 41375026.
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